Interpreting Data-Driven Weather Models
Analysis
Key Takeaways
- •Applies interpretability techniques from LLMs to analyze data-driven weather models.
- •Identifies interpretable physical features within the model's internal representations.
- •Demonstrates the ability to probe and modify these features, leading to physically consistent changes in predictions.
- •Aims to increase trust and scientific value of data-driven physics models.
“We uncover distinct features on a wide range of length and time scales that correspond to tropical cyclones, atmospheric rivers, diurnal and seasonal behavior, large-scale precipitation patterns, specific geographical coding, and sea-ice extent, among others.”